高效异常检测的交叉并行网络

Youngsaeng Jin, Jonghwan Hong, D. Han, Hanseok Ko
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引用次数: 2

摘要

视频流异常检测是一个具有挑战性的问题,因为异常事件的稀缺性和准确标注的难度。为了缓解这些问题,以前已经应用了基于无监督学习的预测方法。这些方法只使用正常事件训练模型,并通过使用编码器-解码器架构从之前的帧序列中预测未来的帧,因此它们对正常事件的预测误差很小,但对异常事件的预测误差很大。然而,该体系结构带来了计算负担,因为一些异常检测任务需要低计算成本而不牺牲性能。本文提出了一种基于交叉并行网络(CPNet)的高效异常检测方法,在不降低性能的前提下减少计算量。它由N个较小的并行U-Net组成,每个U-Net设计用于处理单个输入帧,以使计算显着提高效率。此外,还集成了网络间移位模块,以捕获序列帧之间的时间关系,从而实现更准确的未来预测。定量结果表明,我们的模型比基线U-Net所需的计算成本更低,同时在异常检测方面具有同等的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CPNet: Cross-Parallel Network for Efficient Anomaly Detection
Anomaly detection in video streams is a challenging problem because of the scarcity of abnormal events and the difficulty of accurately annotating them. To alleviate these issues, unsupervised learning-based prediction methods have been previously applied. These approaches train the model with only normal events and predict a future frame from a sequence of preceding frames by use of encoder-decoder architectures so that they result in small prediction errors on normal events but large errors on abnormal events. The architecture, however, comes with the computational burden as some anomaly detection tasks require low computational cost without sacrificing performance. In this paper, Cross-Parallel Network (CPNet) for efficient anomaly detection is proposed here to minimize computations without performance drops. It consists of N smaller parallel U-Net, each of which is designed to handle a single input frame, to make the calculations significantly more efficient. Additionally, an inter-network shift module is incorporated to capture temporal relationships among sequential frames to enable more accurate future predictions. The quantitative results show that our model requires less computational cost than the baseline U-Net while delivering equivalent performance in anomaly detection.
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